利用图像特性和神经网络识别微目标的机制

I. Jumanov, R. Safarov, O. Djumanov
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引用次数: 2

摘要

在工业和技术综合体、环境监测、生态和医学诊断的控制系统中,研究了微物体图像的可视化、识别和分类问题,特别是花粉粒、单细胞生物、指纹,基于其种类的定义,属于一类,利用几何形状、形态学、动态、特定特征、独特特征的神经网络的信息。在先验不足、参数不确定和数据处理精度低的情况下,神经网络的方法、学习算法和组件计算方案提供了最佳的图像识别质量。在测量、输入和传输阶段,由于图像轮廓的非平稳性、逼近、内插和外推的不足而导致的信息失真,得到了估计识别误差的数学表达式。构建并实现了一个花粉粒识别分类软件包,该软件包包括三层松耦合神经网络、Hopfield网络、双向联想记忆和Kohonen算法。采用三次样条函数、双二次样条函数和插值样条函数合成了基于with-teacher和无监督学习算法的花粉样本正确识别、错误识别和拒绝结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mechanisms For Using Image Properties And Neural Networks In Identification Of Micro-Objects
The problem of visualization, recognition, classification of images of micro-objects, in particular, pollen grains, unicellular organisms, fingerprints based on the definition of their variety, belonging to a class, the use of information of geometric shapes, morphology, dynamic, specific characteristics, unique features of neural networks has been investigated, in control systems of industrial and technological complexes, environmental monitoring, ecology, and medical diagnoses. Methods, learning algorithms, component computational schemes of neural networks have been developed, which provide the best quality of image identification in conditions of a priori insufficiency, uncertainty of parameters, and low accuracy of data processing. Mathematical expressions are obtained for estimating identification errors associated with information distortions at the measurement, input, and transmission stages due to nonstationarity, the inadequacy of approximation, interpolation, and extrapolation of the image contour. A software package for the recognition and classification of pollen grains has been built and implemented, which includes algorithms for a three-layer, loosely coupled neural network, Hopfield’s network, bidirectional associative memory, Kohonen. Results are obtained for correct, incorrect recognition, and rejected pollen samples based on with-teacher and unsupervised learning algorithms, which are synthesized with cubic, biquadratic, and interpolation spline functions.
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